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COVID-19 Classification Using Medical Image Synthesis by Generative Adversarial Networks
International Journal of Uncertainty Fuzziness and Knowledge-Based Systems ; 30(03):385-401, 2022.
Article in English | Web of Science | ID: covidwho-1978569
ABSTRACT
The outbreak of novel coronavirus disease 2019, also called COVID-19, in Wuhan, China, began in December 2019. Since its outbreak, infectious disease has rapidly spread across the globe. The testing methods adopted by the medical practitioners gave false negatives, which is a big challenge. Medical imaging using deep learning can be adopted to speed up the testing process and avoid false negatives. This work proposes a novel approach, COVID-19 GAN, to perform coronavirus disease classification using medical image synthesis by a generative adversarial network. Detecting coronavirus infections from the chest X-ray images is very crucial for its early diagnosis and effective treatment. To boost the performance of the deep learning model and improve the accuracy of classification, synthetic data augmentation is performed using generative adversarial networks. Here, the available COVID-19 positive chest X-ray images are fed into the styleGAN2 model. The styleGAN model is trained, and the data necessary for training the deep learning model for coronavirus classification is generated. The generated COVID-19 positive chest X-ray images and the normal chest X-ray images are fed into the deep learning model for training. An accuracy of 99.78% is achieved in classifying chest X-ray images using CNN binary classifier model.
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Full text: Available Collection: Databases of international organizations Database: Web of Science Language: English Journal: International Journal of Uncertainty Fuzziness and Knowledge-Based Systems Year: 2022 Document Type: Article

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Full text: Available Collection: Databases of international organizations Database: Web of Science Language: English Journal: International Journal of Uncertainty Fuzziness and Knowledge-Based Systems Year: 2022 Document Type: Article